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Trustworthy AI in Medical Imaging

Specificaties
Paperback, blz. | Engels
Elsevier Science | e druk, 2024
ISBN13: 9780443237614
Rubricering
Elsevier Science e druk, 2024 9780443237614
Onderdeel van serie The MICCAI Society book Series
Verwachte levertijd ongeveer 9 werkdagen

Samenvatting

Trustworthy AI in Medical Imaging brings together scientific researchers, medical experts, and industry partners working in the field of trustworthiness, bridging the gap between AI research and concrete medical applications and making it a learning resource for undergraduates, masters students, and researchers in AI for medical imaging applications.
The book will help readers acquire the basic notions of AI trustworthiness and understand its concrete application in medical imaging, identify pain points and solutions to enhance trustworthiness in medical imaging applications, understand current limitations and perspectives of trustworthy AI in medical imaging, and identify novel research directions.

Although the problem of trustworthiness in AI is actively researched in different disciplines, the adoption and implementation of trustworthy AI principles in real-world scenarios is still at its infancy. This is particularly true in medical imaging where guidelines and standards for trustworthiness are critical for the successful deployment in clinical practice. After setting out the technical and clinical challenges of AI trustworthiness, the book gives a concise overview of the basic concepts before presenting state-of-the-art methods for solving these challenges.

Specificaties

ISBN13:9780443237614
Taal:Engels
Bindwijze:Paperback

Inhoudsopgave

Preface<br><br>Section 1- Preliminaries<ol><li>Introduction to Trustworthy AI for Medical Imaging & Lecture Plan</li><li>The fundamentals of AI ethics in Medical Imaging</li></ol><p>Section 2– Robustness</p>3. Machine Learning Robustness: A Primer<br>4. Navigating the Unknown: Out-of-Distribution Detection for Medical Imaging<br>5. From Out-of-Distribution Detection and Uncertainty Quantification to Quality Control<br>6. Domain shift, Domain Adaptation and Generalization<p>Section 3 - Validation, Transparency and Reproducibility<br><br>7. Fundamentals on Transparency, Reproducibility and Validation<br>8. Reproducibility in Medical Image Computing<br>9. Collaborative Validation and Performance Assessment in Medical Imaging Applications<br>10. Challenges as a Framework for Trustworthy AI<br><br>Section 4 – Bias and Fairness<br><br>11. Bias and Fairness<br>12. Open Challenges on Fairness of Artificial Intelligence in Medical Imaging Applications<br><br>Section 5 - Explainability, Interpretability and Causality<br><br>13. Fundamentals on Explainable and Interpretable Artificial Intelligence Models<br>14. Causality: Fundamental Principles and Tools<br>15. Interpretable AI for Medical Image Analysis: Methods, Evaluation and Clinical Considerations<br>16. Explainable AI for Medical Image Analysis<br>17. Causal Reasoning in Medical Imaging<br><br>Section 6 - Privacy-preserving ML<br><br>18. Fundamentals of Privacy-Preserving and Secure Machine Learning<br>19. Differential Privacy in Medical Imaging Applications<br><br>Section 7 - Collaborative Learning<br><br>20. Fundamentals on Collaborative Learning<br>21. Large-scale Collaborative Studies in Medical Imaging through Meta Analyses<br>22. Promises and Open Challenges for Translating Federated learning in Hospital Environments<br><br>Section 8 - Beyond the Technical Aspects<br><br>23. Stakeholder Engagement: The Path to Trustworthy AI in Healthcare</p>

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        Trustworthy AI in Medical Imaging